# Copyright 2017 The TensorFlow Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ==============================================================================
"""Tests for ssd resnet v1 FPN feature extractors."""
import tensorflow.compat.v1 as tf

from object_detection.models import ssd_resnet_v1_fpn_feature_extractor
from object_detection.models import ssd_resnet_v1_fpn_feature_extractor_testbase
from object_detection.models import ssd_resnet_v1_fpn_keras_feature_extractor


class SSDResnet50V1FeatureExtractorTest(
    ssd_resnet_v1_fpn_feature_extractor_testbase.
    SSDResnetFPNFeatureExtractorTestBase):
  """SSDResnet50v1Fpn feature extractor test."""

  def _create_feature_extractor(self, depth_multiplier, pad_to_multiple,
                                use_explicit_padding=False, min_depth=32,
                                use_keras=False):
    is_training = True
    if use_keras:
      return (ssd_resnet_v1_fpn_keras_feature_extractor.
              SSDResNet50V1FpnKerasFeatureExtractor(
                  is_training=is_training,
                  depth_multiplier=depth_multiplier,
                  min_depth=min_depth,
                  pad_to_multiple=pad_to_multiple,
                  conv_hyperparams=self._build_conv_hyperparams(
                      add_batch_norm=False),
                  freeze_batchnorm=False,
                  inplace_batchnorm_update=False,
                  name='ResNet50V1_FPN'))
    else:
      return (
          ssd_resnet_v1_fpn_feature_extractor.SSDResnet50V1FpnFeatureExtractor(
              is_training, depth_multiplier, min_depth, pad_to_multiple,
              self.conv_hyperparams_fn,
              use_explicit_padding=use_explicit_padding))

  def _resnet_scope_name(self, use_keras=False):
    if use_keras:
      return 'ResNet50V1_FPN'
    return 'resnet_v1_50'


class SSDResnet101V1FeatureExtractorTest(
    ssd_resnet_v1_fpn_feature_extractor_testbase.
    SSDResnetFPNFeatureExtractorTestBase):
  """SSDResnet101v1Fpn feature extractor test."""

  def _create_feature_extractor(self, depth_multiplier, pad_to_multiple,
                                use_explicit_padding=False, min_depth=32,
                                use_keras=False):
    is_training = True
    if use_keras:
      return (ssd_resnet_v1_fpn_keras_feature_extractor.
              SSDResNet101V1FpnKerasFeatureExtractor(
                  is_training=is_training,
                  depth_multiplier=depth_multiplier,
                  min_depth=min_depth,
                  pad_to_multiple=pad_to_multiple,
                  conv_hyperparams=self._build_conv_hyperparams(
                      add_batch_norm=False),
                  freeze_batchnorm=False,
                  inplace_batchnorm_update=False,
                  name='ResNet101V1_FPN'))
    else:
      return (
          ssd_resnet_v1_fpn_feature_extractor.SSDResnet101V1FpnFeatureExtractor(
              is_training, depth_multiplier, min_depth, pad_to_multiple,
              self.conv_hyperparams_fn,
              use_explicit_padding=use_explicit_padding))

  def _resnet_scope_name(self, use_keras):
    if use_keras:
      return 'ResNet101V1_FPN'
    return 'resnet_v1_101'


class SSDResnet152V1FeatureExtractorTest(
    ssd_resnet_v1_fpn_feature_extractor_testbase.
    SSDResnetFPNFeatureExtractorTestBase):
  """SSDResnet152v1Fpn feature extractor test."""

  def _create_feature_extractor(self, depth_multiplier, pad_to_multiple,
                                use_explicit_padding=False, min_depth=32,
                                use_keras=False):
    is_training = True
    if use_keras:
      return (ssd_resnet_v1_fpn_keras_feature_extractor.
              SSDResNet152V1FpnKerasFeatureExtractor(
                  is_training=is_training,
                  depth_multiplier=depth_multiplier,
                  min_depth=min_depth,
                  pad_to_multiple=pad_to_multiple,
                  conv_hyperparams=self._build_conv_hyperparams(
                      add_batch_norm=False),
                  freeze_batchnorm=False,
                  inplace_batchnorm_update=False,
                  name='ResNet152V1_FPN'))
    else:
      return (
          ssd_resnet_v1_fpn_feature_extractor.SSDResnet152V1FpnFeatureExtractor(
              is_training, depth_multiplier, min_depth, pad_to_multiple,
              self.conv_hyperparams_fn,
              use_explicit_padding=use_explicit_padding))

  def _resnet_scope_name(self, use_keras):
    if use_keras:
      return 'ResNet152V1_FPN'
    return 'resnet_v1_152'


if __name__ == '__main__':
  tf.test.main()
